Robot localization denotes the robot's ability to establish its own position and orientation within the frame of reference. Path planning is effectively an extension of localisation, in that it requires the determination of the robot's current position and a position of a goal location, both within the same frame of reference or coordinates. Map building can be in the shape of a metric map or any notation describing locations in the robot frame of reference.
For any mobile device, the ability to navigate in its environment is important. Avoiding dangerous situations such as collisions and unsafe conditions (temperature, radiation, exposure to weather, etc.) comes first, but if the robot has a purpose that relates to specific places in the robot environment, it must find those places. This article will present an overview of the skill of navigation and try to identify the basic blocks of a robot navigation system, types of navigation systems, and closer look at its related building components.
Robot navigation means the robot's ability to determine its own position in its frame of reference and then to plan a path towards some goal location. In order to navigate in its environment, the robot or any other mobility device requires representation, i.e. a map of the environment and the ability to interpret that representation.
Navigation can be defined as the combination of the three fundamental competences:
Vision-based navigation or optical navigation uses computer vision algorithms and optical sensors, including laser-based range finder and photometric cameras using CCD arrays, to extract the visual features required to the localization in the surrounding environment. However, there are a range of techniques for navigation and localization using vision information, the main components of each technique are:
- representations of the environment.
- sensing models.
- localization algorithms.
The easiest way of making a robot go to a goal location is simply to guide it to this location. This guidance can be done in different ways: burying an inductive loop or magnets in the floor, painting lines on the floor, or by placing beacons, markers, bar codes etc. in the environment. Such Automated Guided Vehicles (AGVs) are used in industrial scenarios for transportation tasks. Indoor Navigation of Robots are possible by IMU based indoor positioning devices.
There are a very wider variety of indoor navigation systems. The basic reference of indoor and outdoor navigation systems is "Vision for mobile robot navigation: a survey" by Guilherme N. DeSouza and Avinash C. Kak.
Autonomous Flight Controllers
Typical Open Source Autonomous Flight Controllers have the ability to fly in full automatic mode and perform the following operations;
- Take off from the ground and fly to a defined altitude
- Fly to one or more waypoints
- Orbit around a designated point
- Return to the launch position
- Descend at a specified speed and land the aircraft
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- Chen, C.; Chai, W.; Nasir, A. K.; Roth, H. (April 2012). "Low cost IMU based indoor mobile robot navigation with the assist of odometry and Wi-Fi using dynamic constraints". Proceedings of the 2012 IEEE/ION Position, Location and Navigation Symposium: 1274–1279. doi:10.1109/PLANS.2012.6236984. ISBN 978-1-4673-0387-3. S2CID 19472012.
- GT Silicon (2017-01-07), An awesome robot with cool navigation and real-time monitoring, retrieved 2018-04-04
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- Oleg Sergiyenko (2019). Machine Vision and Navigation. Springer Nature. pp. 172–. ISBN 978-3-030-22587-2.
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- Mobile Robot Navigation Jonathan Dixon, Oliver Henlich - 10 June 1997
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